Cargando…

The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units

Uncontrolled post-traumatic hemorrhage is an important cause of traumatic mortality that can be avoided. This study intends to use machine learning (ML) to build an algorithm based on data collected from an electronic health record (EHR) system to predict the risk of delayed bleeding in trauma patie...

Descripción completa

Detalles Bibliográficos
Autores principales: Lee, Shih-Wei, Kung, His-Chun, Huang, Jen-Fu, Hsu, Chih-Po, Wang, Chia-Cheng, Wu, Yu-Tung, Wen, Ming-Shien, Cheng, Chi-Tung, Liao, Chien-Hung
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9699320/
https://www.ncbi.nlm.nih.gov/pubmed/36422077
http://dx.doi.org/10.3390/jpm12111901
_version_ 1784839043064791040
author Lee, Shih-Wei
Kung, His-Chun
Huang, Jen-Fu
Hsu, Chih-Po
Wang, Chia-Cheng
Wu, Yu-Tung
Wen, Ming-Shien
Cheng, Chi-Tung
Liao, Chien-Hung
author_facet Lee, Shih-Wei
Kung, His-Chun
Huang, Jen-Fu
Hsu, Chih-Po
Wang, Chia-Cheng
Wu, Yu-Tung
Wen, Ming-Shien
Cheng, Chi-Tung
Liao, Chien-Hung
author_sort Lee, Shih-Wei
collection PubMed
description Uncontrolled post-traumatic hemorrhage is an important cause of traumatic mortality that can be avoided. This study intends to use machine learning (ML) to build an algorithm based on data collected from an electronic health record (EHR) system to predict the risk of delayed bleeding in trauma patients in the ICU. We enrolled patients with torso trauma in the surgical ICU. Demographic features, clinical presentations, and laboratory data were collected from EHR. The algorithm was designed to predict hemoglobin dropping 6 h before it happened and evaluated the performance with 10-fold cross-validation. We collected 2218 cases from 2008 to 2018 in a trauma center. There were 1036 (46.7%) patients with positive hemorrhage events during their ICU stay. Two machine learning algorithms were used to predict ongoing hemorrhage events. The logistic model tree (LMT) and the random forest algorithm achieved an area under the curve (AUC) of 0.816 and 0.809, respectively. In this study, we presented the ML model using demographics, vital signs, and lab data, promising results in predicting delayed bleeding risk in torso trauma patients. Our study also showed the possibility of an early warning system alerting ICU staff that trauma patients need re-evaluation or further survey.
format Online
Article
Text
id pubmed-9699320
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-96993202022-11-26 The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units Lee, Shih-Wei Kung, His-Chun Huang, Jen-Fu Hsu, Chih-Po Wang, Chia-Cheng Wu, Yu-Tung Wen, Ming-Shien Cheng, Chi-Tung Liao, Chien-Hung J Pers Med Article Uncontrolled post-traumatic hemorrhage is an important cause of traumatic mortality that can be avoided. This study intends to use machine learning (ML) to build an algorithm based on data collected from an electronic health record (EHR) system to predict the risk of delayed bleeding in trauma patients in the ICU. We enrolled patients with torso trauma in the surgical ICU. Demographic features, clinical presentations, and laboratory data were collected from EHR. The algorithm was designed to predict hemoglobin dropping 6 h before it happened and evaluated the performance with 10-fold cross-validation. We collected 2218 cases from 2008 to 2018 in a trauma center. There were 1036 (46.7%) patients with positive hemorrhage events during their ICU stay. Two machine learning algorithms were used to predict ongoing hemorrhage events. The logistic model tree (LMT) and the random forest algorithm achieved an area under the curve (AUC) of 0.816 and 0.809, respectively. In this study, we presented the ML model using demographics, vital signs, and lab data, promising results in predicting delayed bleeding risk in torso trauma patients. Our study also showed the possibility of an early warning system alerting ICU staff that trauma patients need re-evaluation or further survey. MDPI 2022-11-14 /pmc/articles/PMC9699320/ /pubmed/36422077 http://dx.doi.org/10.3390/jpm12111901 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lee, Shih-Wei
Kung, His-Chun
Huang, Jen-Fu
Hsu, Chih-Po
Wang, Chia-Cheng
Wu, Yu-Tung
Wen, Ming-Shien
Cheng, Chi-Tung
Liao, Chien-Hung
The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title_full The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title_fullStr The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title_full_unstemmed The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title_short The Clinical Application of Machine Learning-Based Models for Early Prediction of Hemorrhage in Trauma Intensive Care Units
title_sort clinical application of machine learning-based models for early prediction of hemorrhage in trauma intensive care units
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9699320/
https://www.ncbi.nlm.nih.gov/pubmed/36422077
http://dx.doi.org/10.3390/jpm12111901
work_keys_str_mv AT leeshihwei theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT kunghischun theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT huangjenfu theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT hsuchihpo theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wangchiacheng theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wuyutung theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wenmingshien theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT chengchitung theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT liaochienhung theclinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT leeshihwei clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT kunghischun clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT huangjenfu clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT hsuchihpo clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wangchiacheng clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wuyutung clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT wenmingshien clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT chengchitung clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits
AT liaochienhung clinicalapplicationofmachinelearningbasedmodelsforearlypredictionofhemorrhageintraumaintensivecareunits